A new set of simple equations can fast-track the search for metal-organic frameworks (MOFs), a Nobel-Prize-winning class of ...
In the face of increasing global energy demands and the imperative for sustainable management, neural networks have emerged as a core tool for forecasting and optimising energy consumption in ...
Buildings produce a large share of New York's greenhouse gas emissions, but predicting future energy demand—essential for ...
The Aardvark Weather machine learning algorithm is much faster than traditional systems and can work on a desktop computer. When you purchase through links on our site, we may earn an affiliate ...
Abhay Gupta is co-founder and CEO of Bidgely, evolving energy analytics for utilities with the power of data and artificial intelligence. While these are certainly significant environmental wins, the ...
Princeton researchers have developed a new tool to speed the discovery of advanced materials known as metal organic ...
Net-demand energy forecasts are critical for competitive market participants, such as in the Electric Reliability Council of Texas (ERCOT) and similar markets, for several key reasons. For example, ...
Advancements in Building Energy Modeling This year’s Building Simulation conference really dug into how we can make ...
This article was originally published at The Empowerment Alliance and is re-published here with permission. For American ...
Energy Transfer hasn't made an acquisition since the middle of 2024. The company recently stopped work on Lake Charles LNG after it was so close to approving the project. I predict both trends will ...
Energy Transfer (NYSE: ET) is having a rather disappointing 2025. Units of the master limited partnership (MLP) are down over 15% year-to-date. That's due in part to a significant slowdown in its ...